Maskasız qásiyetlerdi anıqlaw arqalı informaciya qáwipsizligin támiyinlew ushın neyro-anıq emes modellestiriw

Avtorlar

  • A.M Dosimbetov

    Innovacion texnologiyalar universiteti

  • D.X Turdishov

    Nukus State Pedagogical Institute named after Ajiniyaz image/svg+xml

  • A.Q Mambetnazarova

    Нукус давлат техника университети

Gilt sózler: Web application, unmasked properties, protected object, model, Neuro-uncertainty, function, configuration

Annotaciya

The presented neuro-fuzzy model for detecting unmasked properties in web applications represents a hybrid system that combines fuzzy logic modeling capabilities with adaptive learning capabilities of neural networks. This model solves the problem of detecting properties that intentionally reveal secure information about the protected object, such as web application software stacks or cryptographic vulnerabilities that can be used in cyberattacks. Based on the framework proposed by Korochentev and Pavlenko, the model is built in the form of a seven-story architecture that processes input properties, changes them through fuzzy inference, and generates an integral risk score. This article examines the model structure, its layers, mathematical foundations, and adaptations for practical analysis of web application security.

Paydalanılǵan ádebiyatlar

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